tech,9-9-H90-1060,bq the <term> target speaker </term> for <term> adaptation </term> , the <term> error rate </term> dropped
tech,15-8-H90-1060,bq target speaker </term> and combined by <term> averaging </term> . Using only 40 <term> utterances </term>
lr-prod,26-4-H90-1060,bq </term> and <term> test set </term> from the <term> DARPA Resource Management corpus </term> . This <term> performance </term> is
other,24-9-H90-1060,bq dropped to 4.1 % --- a 45 % reduction in <term> error </term> compared to the <term> SI </term> result
measure(ment),12-9-H90-1060,bq </term> for <term> adaptation </term> , the <term> error rate </term> dropped to 4.1 % --- a 45 % reduction
lr,20-4-H90-1060,bq word error rate </term> on a standard <term> grammar </term> and <term> test set </term> from the <term>
tech,14-2-H90-1060,bq speaker-independent ( SI ) training </term> of <term> hidden Markov models ( HMM ) </term> , which uses a large amount of <term>
model,16-3-H90-1060,bq averaging the <term> statistics > </term> of <term> independently trained models </term> rather than the usual pooling of
other,7-1-H90-1060,bq paper reports on two contributions to <term> large vocabulary continuous speech recognition </term> . First , we present a new paradigm
measure(ment),1-5-H90-1060,bq Resource Management corpus </term> . This <term> performance </term> is comparable to our best condition
tech,1-7-H90-1060,bq ( target ) <term> speaker </term> . A <term> probabilistic spectral mapping </term> is estimated independently for each
measure(ment),1-8-H90-1060,bq the <term> target speaker </term> . Each <term> reference model </term> is transformed to the <term> space </term>
tech,28-9-H90-1060,bq in <term> error </term> compared to the <term> SI </term> result . This paper presents a specialized
lr,16-6-H90-1060,bq adaptation ( SA ) </term> using the new <term> SI corpus </term> and a small amount of <term> speech
tech,6-4-H90-1060,bq 12 <term> training speakers </term> for <term> SI recognition </term> , we achieved a 7.5 % <term> word error
other,7-8-H90-1060,bq model </term> is transformed to the <term> space </term> of the <term> target speaker </term>
other,30-6-H90-1060,bq speech </term> from the new ( target ) <term> speaker </term> . A <term> probabilistic spectral mapping
tech,8-6-H90-1060,bq show a significant improvement for <term> speaker adaptation ( SA ) </term> using the new <term> SI corpus </term>
tech,8-2-H90-1060,bq First , we present a new paradigm for <term> speaker-independent ( SI ) training </term> of <term> hidden Markov models ( HMM
other,31-2-H90-1060,bq amount of <term> speech </term> from a few <term> speakers </term> instead of the traditional practice
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